黑料网

News

AI is revolutionising health technology

Machine diagnosis may become the norm in the future.
Aalto University / Image recognition is one application that uses deep learning / photo: Mikko Raskinen

Doctors can look at X-ray images and analyse what they see. Thanks to their expertise, they can diagnose a patient鈥檚 health simply by looking at these images.

We are already at the stage where this type of expertise can be stored and automated. With a large number of already classified X-ray images, an artificial intelligence can be trained to diagnose diseases. Thanks to a significant scientific breakthrough called deep learning, there is no need to tell the AI what parts of an image led to the diagnosis; it can discover the diagnostic rules itself.   

AI to solve healthcare labour shortage?

鈥淗ealthcare is one sector that will see a significant change thanks to artificial intelligence. Work in this field has traditionally required expensive knowledge, but now part of that knowledge can be automated鈥, says Professor of Practice Leo K盲rkk盲inen.

He believes that medical diagnoses by machines will be commonplace in the future. Automating repetitive and time-consuming work can help free up expert resources for more demanding tasks in a sector that is plagued by labour shortage.

K盲rkk盲inen has participated in a research project for detecting subarachnoid haemorrhages. The arachnoid membrane separates the brain tissue from cavities in the brain. When a blood vessel in one of these cavities starts to leak, no typical neurological symptoms of a brain haemorrhage may appear, except for a severe headache. In most cases, patients are X-rayed, but there is not always a radiologist present to detect possible leaks in the images. This is where a diagnosis made by an artificial intelligence could save a patient鈥檚 life. 

鈥淭his is AI application at its best. An artificial intelligence does not necessarily do things better than a human, but it can work faster and regardless of the time of day, which is perhaps its greatest advantage鈥, says K盲rkk盲inen.

An artificial intelligence does not necessarily do things better than a human, but it can work faster and regardless of the time of day.

Leo K盲rkk盲inen

Self-learning neural networks

Deep learning 鈥 or neural networks 鈥 is a machine learning method inspired by how we believe that the human brain works. A neural network consists of a very large number of artificial nerves, or neurons, which specialise in performing simple tasks given to them or sent from other neurons. Data moves up through the network鈥檚 layers of neurons, as the system performs combinations of these simple tasks. Thus, each new layer of neurons is tasked with an increasingly complicated task.

Image recognition is one application that uses deep learning. While traditional machine learning methods require very complex programmatic rules for identifying objects in images, a deep learning system can 鈥 with a sufficiently large number of already classified images as input 鈥 automatically adjust its neutral network operation to improve detection accuracy. The system is therefore self-learning. The system can perform tasks that are increasingly complex as the amount and accuracy of the input data increases.

The university is collaborating with hospitals to get access to large amounts of classified data, such as X-ray images, in order to train deep learning systems properly.

鈥淎alto University is participating in several research projects where we collaborate with doctors to identify tools that could help healthcare professionals work faster and more effectively.鈥

  • Updated:
  • Published:
Share
URL copied!

Read more news

Person from behind in dark coat with large embroidered scene of kneeling figure on dramatic black background
Research & Art Published:

The exhibition "Our land, for all" explores personal and national identity

The 20th anniversary exhibition of the Association of Finnish Fine Arts Foundations, opened at Kunsthalle Helsinki, asks: whose stories is Finland built from? The exhibition has been curated by PhD, docent Annamari V盲nsk盲.
Left: person wearing a black jacket and pearl necklace. Right: molecular structure illustration against a cosmic background.
Research & Art Published:

Decoding the chemistry of space with machine learning

Astronomers can detect complex chemical fingerprints聽in stardust聽鈥 but many of them remain unidentified. The聽SpaceML聽project combines machine learning and computational chemistry to simulate how molecules form and evolve in space, helping researchers decode these signals.
A close-up of numerous small, rectangular particles with rounded edges, appearing grey on a dark background.
Research & Art Published:

Catalysis in a new light: Microscale interactions could enhance clean energy technologies

A new study provides a more detailed view of how catalysts function during chemical reactions. The discovery could help develop more efficient materials for applications such as green hydrogen production and a more sustainable chemical industry.
A conference hall filled with attendees sitting at tables, watching a presentation on a large screen.
Campus, Research & Art Published:

Physics Days 2026 gathered Finnish physicists 黑料网

The 2026 edition of the annual conference featured talks on moir茅 matter, women in physics and paper cuts.